Cargando…
DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans
Standard MRI methods are often inadequate for identifying mild traumatic brain injury (TBI). Advances in diffusion tensor imaging now provide potential biomarkers of TBI among white matter fascicles (tracts). However, it is still unclear which tracts are most pertinent to TBI diagnosis. This study r...
Autores principales: | , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Elsevier
2017
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5503837/ https://www.ncbi.nlm.nih.gov/pubmed/28725550 http://dx.doi.org/10.1016/j.nicl.2017.06.031 |
_version_ | 1783249161304408064 |
---|---|
author | Main, Keith L. Soman, Salil Pestilli, Franco Furst, Ansgar Noda, Art Hernandez, Beatriz Kong, Jennifer Cheng, Jauhtai Fairchild, Jennifer K. Taylor, Joy Yesavage, Jerome Wesson Ashford, J. Kraemer, Helena Adamson, Maheen M. |
author_facet | Main, Keith L. Soman, Salil Pestilli, Franco Furst, Ansgar Noda, Art Hernandez, Beatriz Kong, Jennifer Cheng, Jauhtai Fairchild, Jennifer K. Taylor, Joy Yesavage, Jerome Wesson Ashford, J. Kraemer, Helena Adamson, Maheen M. |
author_sort | Main, Keith L. |
collection | PubMed |
description | Standard MRI methods are often inadequate for identifying mild traumatic brain injury (TBI). Advances in diffusion tensor imaging now provide potential biomarkers of TBI among white matter fascicles (tracts). However, it is still unclear which tracts are most pertinent to TBI diagnosis. This study ranked fiber tracts on their ability to discriminate patients with and without TBI. We acquired diffusion tensor imaging data from military veterans admitted to a polytrauma clinic (Overall n = 109; Age: M = 47.2, SD = 11.3; Male: 88%; TBI: 67%). TBI diagnosis was based on self-report and neurological examination. Fiber tractography analysis produced 20 fiber tracts per patient. Each tract yielded four clinically relevant measures (fractional anisotropy, mean diffusivity, radial diffusivity, and axial diffusivity). We applied receiver operating characteristic (ROC) analyses to identify the most diagnostic tract for each measure. The analyses produced an optimal cutpoint for each tract. We then used kappa coefficients to rate the agreement of each cutpoint with the neurologist's diagnosis. The tract with the highest kappa was most diagnostic. As a check on the ROC results, we performed a stepwise logistic regression on each measure using all 20 tracts as predictors. We also bootstrapped the ROC analyses to compute the 95% confidence intervals for sensitivity, specificity, and the highest kappa coefficients. The ROC analyses identified two fiber tracts as most diagnostic of TBI: the left cingulum (LCG) and the left inferior fronto-occipital fasciculus (LIF). Like ROC, logistic regression identified LCG as most predictive for the FA measure but identified the right anterior thalamic tract (RAT) for the MD, RD, and AD measures. These findings are potentially relevant to the development of TBI biomarkers. Our methods also demonstrate how ROC analysis may be used to identify clinically relevant variables in the TBI population. |
format | Online Article Text |
id | pubmed-5503837 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2017 |
publisher | Elsevier |
record_format | MEDLINE/PubMed |
spelling | pubmed-55038372017-07-19 DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans Main, Keith L. Soman, Salil Pestilli, Franco Furst, Ansgar Noda, Art Hernandez, Beatriz Kong, Jennifer Cheng, Jauhtai Fairchild, Jennifer K. Taylor, Joy Yesavage, Jerome Wesson Ashford, J. Kraemer, Helena Adamson, Maheen M. Neuroimage Clin Regular Article Standard MRI methods are often inadequate for identifying mild traumatic brain injury (TBI). Advances in diffusion tensor imaging now provide potential biomarkers of TBI among white matter fascicles (tracts). However, it is still unclear which tracts are most pertinent to TBI diagnosis. This study ranked fiber tracts on their ability to discriminate patients with and without TBI. We acquired diffusion tensor imaging data from military veterans admitted to a polytrauma clinic (Overall n = 109; Age: M = 47.2, SD = 11.3; Male: 88%; TBI: 67%). TBI diagnosis was based on self-report and neurological examination. Fiber tractography analysis produced 20 fiber tracts per patient. Each tract yielded four clinically relevant measures (fractional anisotropy, mean diffusivity, radial diffusivity, and axial diffusivity). We applied receiver operating characteristic (ROC) analyses to identify the most diagnostic tract for each measure. The analyses produced an optimal cutpoint for each tract. We then used kappa coefficients to rate the agreement of each cutpoint with the neurologist's diagnosis. The tract with the highest kappa was most diagnostic. As a check on the ROC results, we performed a stepwise logistic regression on each measure using all 20 tracts as predictors. We also bootstrapped the ROC analyses to compute the 95% confidence intervals for sensitivity, specificity, and the highest kappa coefficients. The ROC analyses identified two fiber tracts as most diagnostic of TBI: the left cingulum (LCG) and the left inferior fronto-occipital fasciculus (LIF). Like ROC, logistic regression identified LCG as most predictive for the FA measure but identified the right anterior thalamic tract (RAT) for the MD, RD, and AD measures. These findings are potentially relevant to the development of TBI biomarkers. Our methods also demonstrate how ROC analysis may be used to identify clinically relevant variables in the TBI population. Elsevier 2017-06-24 /pmc/articles/PMC5503837/ /pubmed/28725550 http://dx.doi.org/10.1016/j.nicl.2017.06.031 Text en © 2017 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/). |
spellingShingle | Regular Article Main, Keith L. Soman, Salil Pestilli, Franco Furst, Ansgar Noda, Art Hernandez, Beatriz Kong, Jennifer Cheng, Jauhtai Fairchild, Jennifer K. Taylor, Joy Yesavage, Jerome Wesson Ashford, J. Kraemer, Helena Adamson, Maheen M. DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title | DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title_full | DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title_fullStr | DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title_full_unstemmed | DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title_short | DTI measures identify mild and moderate TBI cases among patients with complex health problems: A receiver operating characteristic analysis of U.S. veterans |
title_sort | dti measures identify mild and moderate tbi cases among patients with complex health problems: a receiver operating characteristic analysis of u.s. veterans |
topic | Regular Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5503837/ https://www.ncbi.nlm.nih.gov/pubmed/28725550 http://dx.doi.org/10.1016/j.nicl.2017.06.031 |
work_keys_str_mv | AT mainkeithl dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT somansalil dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT pestillifranco dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT furstansgar dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT nodaart dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT hernandezbeatriz dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT kongjennifer dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT chengjauhtai dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT fairchildjenniferk dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT taylorjoy dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT yesavagejerome dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT wessonashfordj dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT kraemerhelena dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans AT adamsonmaheenm dtimeasuresidentifymildandmoderatetbicasesamongpatientswithcomplexhealthproblemsareceiveroperatingcharacteristicanalysisofusveterans |